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基于对接筛选发现的新型 N-豆蔻酰转移酶抑制剂。

Novel Hits for N-Myristoyltransferase Inhibition Discovered by Docking-Based Screening.

机构信息

Department of Chemistry, Faculty of Pharmacy, Medical University of Sofia, 1000 Sofia, Bulgaria.

出版信息

Molecules. 2022 Aug 26;27(17):5478. doi: 10.3390/molecules27175478.

Abstract

N-myristoyltransferase (NMT) inhibitors that were initially developed for treatment of parasitic protozoan infections, including sleeping sickness, malaria, and leismaniasis, have also shown great promise as treatment for oncological diseases. The successful transition of NMT inhibitors, which are currently at preclinical to early clinical stages, toward clinical approval and utilization may depend on the development and design of a diverse set of drug molecules with particular selectivity or pharmacological properties. In our study, we report that a common feature in the inhibitory mechanism of NMT is the formation of a salt bridge between a positively charged chemical group of the small molecule and the negatively charged C-terminus of an enzyme. Based on this observation, we designed a virtual screening protocol to identify novel ligands that mimic this mode of interaction. By screening over 1.1 million structures downloaded from the ZINC database, several hits were identified that displayed NMT inhibitory activity. The stability of the inhibitor-NMT complexes was evaluated by molecular dynamics simulations. The ligands from the stable complexes were tested in vitro and some of them appear to be promising leads for further optimization.

摘要

N-豆蔻酰转移酶(NMT)抑制剂最初是为治疗寄生虫原生动物感染(包括昏睡病、疟疾和利什曼病)而开发的,它们在治疗肿瘤疾病方面也显示出巨大的潜力。NMT 抑制剂从临床前到早期临床阶段的成功转化为临床批准和应用,可能取决于开发和设计具有特定选择性或药理学特性的多样化药物分子。在我们的研究中,我们报告说,NMT 抑制机制的一个共同特征是小分子的正电荷化学基团与酶的负 C 端之间形成盐桥。基于这一观察,我们设计了一种虚拟筛选方案来识别模拟这种相互作用模式的新型配体。通过筛选从 ZINC 数据库下载的超过 110 万个结构,鉴定出了一些具有 NMT 抑制活性的化合物。通过分子动力学模拟评估了抑制剂-NMT 复合物的稳定性。对稳定复合物中的配体进行了体外测试,其中一些似乎是进一步优化的有前途的先导化合物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6e43/9457982/d68ec2b1b621/molecules-27-05478-g001.jpg

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